Friday, May 15, 2026

Cutting Opex to Support AI Capex Probably Sets Stage for More of the Same

In a brutal way, the notion that the business value of artificial intelligence hinges in large part on displacing human labor has already begun to play out in early substitution of capital expense for operating expense.


For the top five U.S. hyperscalers (Alphabet, Amazon, Meta, Microsoft, and Oracle), combined capex is projected to approach $725  billion in 2026, a more than 60 percent increase over 2025 levels.


To fund this without destroying their balance sheets, companies are pulling two primary levers:

  1. Direct Labor Substitution: Reducing headcount in "legacy" or non-core divisions to reallocate those billions into AI infrastructure.

  2. Productivity Gains: Using AI internally ("vibe coding" or AI-assisted programming) to handle the same workload with fewer new hires.


Company 

Estimated Jobs Cut

Timeframe

Oracle

~30,000

Q1 2026

Amazon (AWS/Corp)

~16,000–30,000

Q1-Q2 2026

Meta

~16,000

Q2 2026

Dell

~11,000

Fiscal 2026

Cisco

~6,000

Q2 2026

Microsoft/LinkedIn

~8,750 (Buyouts)

Q2 2026

Google Cloud

~1,500

Ongoing 2026


Analysts at firms like Goldman Sachs and J.P. Morgan argue that while the headcount reduction is painful, the "cost of doing nothing" is higher. 


And while overspending represents a danger, firms are cutting headcount to pay for the capital investments. 


The logic is indeed "brutal" because it substitutes capex for human employment (operating expense). 


On the other hand, that is the simple logic of most computing technology deployments.


Thursday, May 14, 2026

UGC Created Social Media; Might AI Create "Social Software?"

Are investors and financial markets consistently rational or likely to be correct where it comes to the valuation of high-performance computing infrastructure investments and the likely impact on enterprise software as a service?


Investors seem to be simultaneously betting that AI capex is "too high" and won't produce big benefits, while simultaneously betting that software as a service will be disrupted successfully by AI. 


Can both outcomes occur at once? 

  • If AI is ineffective, then the high capex won’t affect SaaS

  • If SaaS can be disrupted, then the AI is effective. 


So markets are betting that an “ineffective means” (high AI infrastructure capex) produces an effective outcome (SaaS is disrupted). 


In that scenario, high capex “fails” but then SaaS disruption “succeeds.”


The scenario the market appears not to believe is that high AI capex will prove effective, even in the short term, but that SaaS providers are able to avoid disruption because “write your own app” is not a long-term source of value. 


The business moats for enterprise SaaS lie elsewhere. 


Under what conditions might both be right; both be wrong?


Some might argue the answer is that, “yes, both arguments can be correct, at the same time.”


In this scenario, the "capex is too high" argument could be right if hyperscalers and suppliers of neocloud services are overspending on hardware that they cannot monetize profitably at current margins.


Simultaneously, the "SaaS is disrupted" argument might also be right because AI replaces relatively more expensive software as a service with "service-as-software" in the form of a cheap, autonomous agent.


But it is possible both theses are wrong. 


Perhaps AI increases the value of SaaS. Perhaps:

  • The demand for AI turns out to be even larger than anticipated (every dollar of GPU spend generates five dollars of high-margin revenue)

  • Incumbent SaaS companies (Salesforce, ServiceNow, Adobe) successfully "wrap" AI into their existing workflows. 

  • Users prove they do not want to use 10,000 separate AI agents

  • The SaaS "moat" proves to be the proprietary data and the user workflow

  • Hyperscalers cut headcount to fund AI capex, with relatively-neutral cash flow implications medium term. 


Outcome

Condition for Capex Validity

Condition for SaaS Survival

Optimism is Rational

AI leads to "Artificial General Intelligence" (AGI) levels of productivity.

SaaS companies fail to innovate, and "Agentic" workflows replace seat-based licenses.

Optimism is Irrational

We are in an "AI infrastructure bubble” and financial returns will not emerge. 

Investors overestimate AI's ability to handle complex, m.essy, human-centered business logic.


The market might be irrational, in other words, creating a valuation opportunity:

  • Yes, capex is high, but warranted: “market leaders” are being born

  • Other means will be found to reduce pressure on free cash flow

  • SaaS valuations already have reset, and suppliers will successfully respond

  • SaaS value is not based on code, but other variables. 


The analogy might be user-generated content. It might once have been feared it would be a substitute for “professional” content. But that did not happen. Social media emerged as a distinct experience. 


In the mid-2000s, the debate was: Will blogs replace newspapers? or Will YouTube replace TV?


When the cost of "publishing" went to zero, we didn't just get the same news in a different format; we got a massive explosion of new content types (influencers, viral memes, and real-time citizen journalism) that professional studios could never have produced.


Feature

The Social Media Shift (Web 2.0)

The AI Shift (Generative Era)

The "Threat"

UGC replacing Professional Media.

AI replacing SaaS/Labor.

The Reality

Expanded the total volume of content by orders of magnitude.

Expands the total volume of "work/code" by orders of magnitude.

The New Form

The Feed (Algorithmically curated attention).

The Agent (Autonomous execution of intent).


If SaaS is about providing a tool for a human to do work (Salesforce is a tool for a salesperson), the new form of AI is about providing the outcome itself.


Instead of primarily displacing SaaS, AI is enabling a "service-as-software" or maybe “social software” model:

  • Hyper-personalized software: AI might "spin up" a bespoke, ephemeral interface tailored to a specific project’s needs, then dissolve it when the task is done

  • Shadow workers: In social media, everyone became a creator. In the AI era, everyone becomes a "manager" or "orchestrator." The "something else" is a world where a single person can run a complex operation that previously required a department of 50

  • Micro-services: SaaS was always limited by "Total Addressable Market" (TAM). If a problem was too small, no one built software for it. AI can make it profitable to solve problems that were previously too "minor" to automate.


So we might be looking for signs that “social media” is developing. Perhaps it is not so much that SaaS is disrupted as it is that “social software” is developing. 


Wednesday, May 13, 2026

Luddites Didn't Stop Industrial Machinery; Cognitive Workers Won't Stop AI

The comparison between the Luddites and today’s concerns about artificial intelligence arguably represents the same pattern we also saw with the personal computer and the internet.


What might be different in each case are the types of workers who fear replacement: factory workers; clerical workers; retail service providers or cognitive workers. 


The Luddites were English textile workers (1811–1816) who protested a change in the production system, namely machinery substitution that:

  • Reduced wages

  • Replaced highly skilled workers with lower-paid labor

  • Lowered product quality

  • Shifted economic gains from workers to owners. 


AI is different only in that it seems poised to affect cognitive workers, where industrial production affected “cottage industry.”


Factor

Luddites

AI

Type of labor affected

Manual and craft labor

Cognitive and creative labor

Speed of adoption

Decades

Potentially years

Skill barrier

Replaced artisans with less-skilled workers

May replace both junior and senior knowledge workers

Scope

Textile industry

Nearly all industries


The advent of the personal computer raised concerns that secretaries and typists would disappear. That mostly did happen. 


The internet raised fears of a loss of jobs in:

  • Retail stores

  • Newspapers

  • Intermediaries (travel agents, brokers.


That did happen. 


Across mechanization, PCs, the internet, and AI, the same cycle appears, and some jobs will, in fact, disappear. Others will be created. 


Stage

Typical Reaction

New technology emerges

Excitement and skepticism

Job loss becomes visible

Fear and resistance

Productivity rises

Economic gains accumulate

New industries emerge

Employment shifts

Society adapts

Technology becomes ordinary


But the translation will not be painless:

  • Some workers and firms lose

  • Workers may experience prolonged wage pressure and displacement

  • But new jobs will be created, as well. 


Technology

Dominant Fear

Long-Term Outcome

Textile machinery

Skilled artisans replaced

Cheaper goods, industrial growth, labor upheaval

Personal computers

Office jobs disappear

Major productivity gains and new occupations

Internet

Intermediaries and media collapse

Massive disruption plus entirely new sectors

AI

Cognitive work automated

?


Some disruption is going to happen, and people will not like it.


Tuesday, May 12, 2026

Akamai CDN Deal with Anthropic Shows Changing Value of CDNs

Anthropic's $1.8 billion, seven-year agreement to use the Akamai network shows the new uses of edge computing for frontier language models.


You might recall that in early April 2026, the launch of Claude Managed Agents caused Fastly, Akamai and Cloudflare share prices to plummet, as investors apparently viewed Claude Managed Agents as a direct infrastructure competitor to these platforms.


  • Fastly plunged 18 percent

  • Akamai sunk 13 percent

  • Cloudflare collapsed by 11 percent. 


As has been the case for enterprise software as a service, security stocks and then content delivery networks, investors worried about the substitution effects. 


Some of us might already guess that the fears, while rational, are likely overdone. Perhaps the main damage is the resetting of  valuation multiples back to prior levels.


Software Segment

New "Floor" P/E

Historical Context

Mega-Cap SaaS (Microsoft, SAP)

28x – 32x

Historic: 35x+

High-Growth / "Rule of 40" (ServiceNow, CrowdStrike)

45x – 55x

Historic: 80x – 100x+

Mature / Cyclical Enterprise (Salesforce, Oracle)

18x – 24x

Historic: 25x – 30x

Infrastructure / Dev Ops (Datadog, Snowflake)

50x – 60x

Historic: 100x+

Mid-Market / "Broken" SaaS

12x – 16x

Historic: 25x


To be sure, low latency remains the paramount value, as has been the case for content providers for decades. But where traditional content delivery networks have largely been about edge storage, AI models benefit more from edge compute for inference operations. 


Where traditional content delivery minimized latency by storing popular content at the edge, AI inference operations benefit by conducting inference operations at the edge.


Content providers such as Netflix or Pandora deliver mostly pre-encoded, cacheable files (videos, audio) that can be pre-positioned at edges with high hit rates. 


In contrast, AI inference operations are:

  • highly dynamic, as

  • each prompt is unique

  • limiting the value of caching

  • so the value shifts more to distributed compute and intelligent routing.


But edge computing also helps with scale and demand spikes. CDNs also provide such features as:

  • global load balancing

  • auto-scaling across points of presence

  • burst capacity without over-provisioning central clusters

  • reduced data transfer (less backhaul to origin)

  • efficient routing

  • potential caching of reusable elements

  • lower bandwidth and egress costs

  • security 


Traditional CDNs provided value by moving content bits efficiently. 


For frontier AI models, the value comes from edge computation.


Lower latency is still the chief value, though.

Cutting Opex to Support AI Capex Probably Sets Stage for More of the Same

In a brutal way, the notion that the business value of artificial intelligence hinges in large part on displacing human labor has already be...